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Avoid the Burden and Risk of Multiple Person Records

Read this eBook to learn how you can leverage an EMPI to improve clinical and operational outcomes 

Duplicate person data costs $1 million per year for the average large hospital. With healthcare being the world’s fastest growing source of data, managing this information is getting more complex.  

Information comes from many sources, including hospitals, retail clinics, doctors’ offices, wearable devices, etc., and has incredible potential to transform patient care. Unfortunately, the amount of data and variability of sources increases the risk of duplicate material or information that is often inaccurate, incomplete, or inconsistent.  

By using a next-generation enterprise master person index (EMPI) healthcare delivery organizations have an opportunity to ensure that patient information gathered, recorded, analyzed, and exchanged with other systems is connected and accurate.  

Next-generation EMPI solutions: 

  1. Enable the delivery of higher-quality patient care 
  2. Enhance clinical outcomes 
  3. Decrease costs

Read Avoid the Burden and Risk of Multiple Person Records to learn how to effectively leverage an EMPI for accurate patient identity data that can improve clinical and operational outcomes.  

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